Department of Electrical Engineering, School of Electrical Engineering and Computer Science, National University of Sciences and Technology (NUST), Islamabad, Pakistan.
IEEE Trans Neural Syst Rehabil Eng. 2013 Jan;21(1):1-9. doi: 10.1109/TNSRE.2012.2211036. Epub 2012 Aug 10.
Modern microelectrode arrays acquire neural signals from hundreds of neurons in parallel that are subsequently processed for spike sorting. It is important to identify, extract, and transmit appropriate features that allow accurate spike sorting while using minimum computational resources. This paper describes a new set of spike sorting features, explicitly framed to be computationally efficient and shown to outperform principal component analysis (PCA)-based spike sorting. A hardware friendly architecture, feasible for implantation, is also presented for detecting neural spikes and extracting features to be transmitted for off chip spike classification. The proposed feature set does not require any off-chip training, and requires about 5% of computations as compared to the PCA-based features for the same classification accuracy, tested for spike trains with a broad range of signal-to-noise ratio. Our simulations show a reduction of required bandwidth to about 2% of original data rate, with an average classification accuracy of greater than 94% at a typical signal to noise ratio of 5 dB.
现代微电极阵列可从数百个神经元中并行获取神经信号,随后对这些信号进行处理以进行尖峰分类。重要的是要识别、提取和传输适当的特征,以便在使用最小计算资源的同时进行准确的尖峰分类。本文描述了一组新的尖峰分类特征,这些特征是专门设计的,具有计算效率,并且在基于主成分分析 (PCA) 的尖峰分类方面表现出色。还提出了一种硬件友好的架构,可用于植入物,用于检测神经尖峰并提取要传输的特征,以进行片外尖峰分类。所提出的特征集不需要任何片外训练,并且与基于 PCA 的特征相比,在相同的分类精度下,所需的计算量减少了约 5%,针对具有广泛信噪比的尖峰序列进行了测试。我们的模拟表明,所需带宽减少到原始数据速率的约 2%,在典型的信噪比为 5 dB 的情况下,平均分类精度大于 94%。